Abstract
Several neuron types have been shown to exhibit (subthreshold) membrane potential resonance (MPR), defined as the occurrence of a peak in their voltage amplitude response to oscillatory input currents at a preferred (resonant) frequency. MPR has been investigated both experimentally and theoretically. However, whether MPR is simply an epiphenomenon or it plays a functional role for the generation of neuronal network oscillations and how the latent time scales present in individual, non-oscillatory cells affect the properties of the oscillatory networks in which they are embedded are open questions. We address these issues by investigating a minimal network model consisting of (i) a non-oscillatory linear resonator (band-pass filter) with 2D dynamics, (ii) a passive cell (low-pass filter) with 1D linear dynamics, and (iii) nonlinear graded synaptic connections (excitatory or inhibitory) with instantaneous dynamics. We demonstrate that (i) the network oscillations crucially depend on the presence of MPR in the resonator, (ii) they are amplified by the network connectivity, (iii) they develop relaxation oscillations for high enough levels of mutual inhibition/excitation, and (iv) the network frequency monotonically depends on the resonators resonant frequency. We explain these phenomena using a reduced adapted version of the classical phase-plane analysis that helps uncovering the type of effective network nonlinearities that contribute to the generation of network oscillations. We extend our results to networks having cells with 2D dynamics. Our results have direct implications for network models of firing rate type and other biological oscillatory networks (e.g, biochemical, genetic).
Similar content being viewed by others
Avoid common mistakes on your manuscript.
1 Introduction
Neuronalnetwork oscillations emerge from the cooperative activity of the participating neurons and the network connectivity and involve the interplay of the nonlinearities and time scales present in the ionic and synaptic currents. In some cases, the network time scales directly reflect the time scales of the individual neurons. This class includes the synchronized activity of population of oscillators where the frequency band of both the network and the individual oscillators coincides.
There are other cases where the oscillatory time scales are latent (or hidden) at the individual neuron level and become apparent only at the network level. This class includes the oscillatory networks of non-oscillatory neurons that are the focus of this paper. More specifically, we investigate oscillatory networks where at least one of the participating (non-oscillatory) cells exhibits (subthreshold) membrane potential resonance (MPR), defined as the occurrence of a peak in the cell’s voltage amplitude response to oscillatory input currents at a preferred (resonant) frequency (Hutcheon and Yarom 2000; Richardson et al. 2003; Rotstein and Nadim 2014b, 2015). Because the individual cells are intrinsically non-oscillatory, the resonant frequency reflects an oscillatory latent time scale that can be uncovered in the presence of oscillatory input currents, but not by direct observation of their spontaneous behavior.
The mechanisms of generation of sustained (limit cycle) oscillations in single neurons are reasonably well understood (Ermentrout and Terman 2010; Borgers 2017; Izhikevich 2006; Dayan and Abbott 2001). They require the interplay of negative and positive feedback effects mediated by the ionic current gating variables or related processes. Resonant ionic processes (e.g., hyperpolarization-activated mixed-cation Ih current, M-type slow-potassium current IKs and T-type calcium inactivation ICaT) oppose changes in voltage, while amplifying ionic processes (e.g., persistent sodium current INap, T-type calcium activation) favor these changes.
From the oscillatory dynamics point of view, there is a hierarchy of phenomena that requires the presence of a resonant process and whose degree complexity increases with the levels of the amplifying current (Hutcheon and Yarom 2000; Rotstein 2017b) in system where sustained oscillations (subthreshold or spikes) are generated by Hopf bifurcation mechanisms (Ermentrout and Terman 2010; Borgers 2017; Izhikevich 2006). At the bottom of this hierarchy are the overshoot type of responses to square-pulse perturbations (Fig. 1, green curves) in neurons that exhibit MPR (Hutcheon and Yarom 2000; Richardson et al. 2003; Rotstein and Nadim 2014b, 2015), but not subthreshold oscillations (STOs). We refer to them as resonators. For higher amplification levels the neuron may display damped subthreshold oscillations (Fig. 1, red curves). In these two cases the underlying systems may be quasi-linear in large enough vicinities of the resting potential (fixed-point) (Rotstein 2017b). (Damped oscillators may also exhibit resonance, but we do not refer to them as resonators.) At the top of the hierarchy are the sustained (limit cycle) oscillations (Fig. 1, blue curves) that require high enough amplification levels for the development of the nonlinearities necessary for the existence of limit cycles (Rotstein 2017b). If these limit cycles represent STOs, additional amplification levels can produce spikes or depolarization block. Examples of models exhibiting this type of behavior are the Morris-Lecar model (Morris and Lecar 1981) and the Ih + INap or IKs + INap models studied in Rotstein (2017b) (see also Rotstein 2017c).
MPR has been investigated in many neuron types both experimentally and theoretically (Hutcheon and Yarom 2000; Richardson et al. 2003; Lampl and Yarom 1997; Llinás and Yarom 1986; Erchova et al. 2004; Schreiber et al. 2004; Hutcheon et al. 1996; Gastrein et al. 2011; Hu et al. 2002, 2009; Narayanan and Johnston 2007, 2008; Marcelin et al.2009; D’angelo et al. 2001, 2009; Pike et al. 2000; Tseng and Nadim 2010; Tohidi and Nadim 2009; Solinas et al. 2007; Wu et al. 2001; Muresan and Savin 2007; Heys et al. 2010, 2012; Zemankovics et al. 2010; Nolan et al. 2007; Engel et al.2008; Boehlen et al. 2010, 2013; Rathour and Narayanan 2012, 2014; Fox et al. 2017; Chen et al. 2016; Beatty et al. 2015; Song et al. 2016; Art et al. 1986; Remme et al. 2014; Higgs and Spain 2009; Yang et al. 2009; Mikiel-Hunter et al. 2016; Rau et al. 2015; Sciamanna and Wilson 2011; Lau and Zochowski2011; van Brederode and Berger 2008; Rotstein 2014a, 2014b, 2015, 2017a; Szucs et al. 2017). However, in contrast to single cell intrinsic oscillations, the consequences of cellular MPR on network oscillations are not well understood. Only a few studies have addressed these issues in networks having neurons that exhibit MPR (Chen et al. 2016; Stark et al. 2013; Tikidji-Hamburyan et al. 2015; Tchumatchenko and Clopath 2014; Schmidt et al. 2016; Moca et al. 2014; Baroni et al. 2014; Rotstein et al. 2017d) or have resonant gating variables (Wang and Rinzel 1992; Manor et al. 1997; Torben-Nielsen et al. 2012). To our knowledge, no study to date has examined the detailed mechanisms of generation of oscillations in networks of non-oscillatory resonators and how the network oscillations reflect the latent time scale provided by the resonant frequency.
From the mechanistic point of view, we seek to understand how the resonant properties of individual nodes interact with the network connectivity to produce oscillations in reciprocally connected networks. We reasoned that if oscillations are to be generated in networks where the participating neurons only provide the resonant properties, then the amplification effects should result from the network connectivity. According to this hypothesis, oscillations should be generated in self-excited (Fig. 2a), but not self-inhibited (Fig. 2b) resonators and in two-cell networks of mutually inhibited or mutually excited cells that include one resonator (Figs. 2d, e and f), but not in mutually inhibited non-resonant cells (low-pass filters) (Fig. 2c). Moreover, the resonant frequency of the individual resonators should control, or at least have a direct effect, on the network frequency. Analogously to single cell oscillations, the mechanism of generation of network oscillations should involve a Hopf bifurcation and the dynamic hierarchy described above. Some of these patterns have been observed for similar systems (Manor et al. 1999) and for network models using the Wilson-Cowan formalism (Beer 1995; Ermentrout and Terman 2010; Wilson and Cowan 1972). However, the role that the filtering properties of the individual nodes (preferred frequency responses to oscillatory inputs) play in the generation of network oscillations has not been investigated.
We test these ideas using the simplest types of oscillatory networks of non-oscillatory neurons, consisting of a linear resonator reciprocally connected to a linear cell (either a low-pass filter showing no resonance or another resonator) with instantaneous graded synapses (see the motif diagrams in Fig. 2). We use linear (linearized conductance-based) models for the individual neurons to isolate the resonant (negative feedback) effects from the nonlinear amplifications that may lead to sustained oscillations.
These linearized models capture the quasi-linear dynamics of models having the passive currents and Ih or IKs, but no amplifying currents (e.g., INap) (Rotstein 2017b). They also capture the dynamics of uncoupled components of the firing rate models of Wilson-Cowan type (Wilson and Cowan 1972) with adaptation (Curtu and Rubin 2011; Shpiro et al. 2009; Tabak et al. 2011).
Finally, we use graded synapses because of the subthreshold range of voltages in which they operate and because it is the type of nonlinearities used in firing rate models. They are assumed to be instantaneously fast and to have no dynamics (Wang and Rinzel 1992; Manor et al. 1997, 1999; Ambrosio-Mouser et al. 2006; Brea et al. 2009; David et al. 2015; Curtu and Rubin 2011; Shpiro et al. 2009; Tabak et al. 2011 ) to strip them from any additional dynamic effects.
The questions we ask in this paper aim to conceptually address the mechanisms by which neuronal frequency filters interact within a network. Our results in conjunction with the results of previous, complementary studies (Manor et al.1997, 1999; Wang and Rinzel 1992; Ambrosio-Mouser et al. 2006; Chen et al. 2016) have implications not only for the understanding of neuronal oscillations, but also for the understanding how frequency-dependent information is communicated across neurons and networks and the phenomenon of network resonance (Ledoux and Brunel 2011; Stark et al. 2013).
The overview of the paper is as follows. In Section 3.1 we review the frequency response properties of individual neurons with one- and two-dimensional linear dynamics. In the subsequent sections we combine resonators (2D band-pass filters) and passive cells (1D low-pass filters) to analyze the circumstances under which network oscillations are generated for the various circuit motifs shown in Fig. 2 and their properties. In Section 3.2 we discuss the oscillatory properties of self-excited resonators (Fig. 2b) and show that the limit cycle oscillations monotonically depend on the resonator’s resonant frequency. In Section 3.3 we show that mutually inhibitory networks consisting of one resonator and a passive cell (Fig. 2e) are able to generate limit cycle oscillations, discuss their properties and show that their frequency monotonically depends on the resonator’s resonant frequency. In Sections 3.4 and 3.5 we extend these results to mutually excitatory networks consisting of one resonator and a passive cell (Fig. 2d) and a mutually inhibitory network consisting of two resonators (Fig. 2f). The “negative results” are discussed in the A. There we show that self-inhibited resonators (Fig. 2a) and two-cell networks of passive cells (e.g., Fig. 2c), that do not include resonators, do not show sustained (limit cycle) oscillations. In addition to network oscillations, the two-cell networks we consider in this paper have non-oscillatory regimes (stable fixed-points) that may show linear and nonlinear resonance in response to oscillatory inputs, and could be functional in the generation of oscillations in larger networks. The investigation of these more general scenarios is outside the scope of this paper. Finally, in Section 4 we discuss our results and their implications for network dynamics.
2 Methods
2.1 Networks of linearized cells with graded synapses
We used linearized biophysical (conductance-based) models for the individual cells and (nonlinear) graded synaptic connections. The linearization process for conductance-based models for single cells has been previously described in Richardson et al. (2003) and Rotstein and Nadim (2014b). We refer the reader to these references for details.
The dynamics of a two-cell network are described by
for k = 1,2. In Equations (1)-(2) t is time, vk is the voltage (mV) relative to the voltage coordinate of the fixed-point (equilibrium potential) V̄k, wk is the gating variable relative to the gating variable coordinate of the fixed-point w̄k and normalized by the derivative of the corresponding activation curve, Ck is the capacitance, gL,k is the linearized leak maximal conductance, gk is the ionic current linearized conductance, τk is the linearized time constant and Isyn,k is the graded synaptic current from the other neuron in the network and given by
where Gsyn,k is the maximal synaptic conductance, Esyn,k is the synaptic reversal potential relative to V̄k and
where the half-activation point vhlf is also relative to V̄k.
We use the following units: mV for voltage, ms for time, μF/cm2 for capacitance, μA/cm2 for current and mS/cm2 for the maximal conductances. Unless stated otherwise, we used the following parameter values: C = 1, Vhlf = 0, Vslp = 1, Ein = − 20, Eex = 60.
Note that the heterogeneity due to different values of the DC current Iapp,k and other biophysical parameters in the original conductance-based model is translated into the reversal potentials Esyn,k and the functions Sk,∞(v) through the fixed-point (V̄1,V̄2). Specifically, if Esyn and Vhlf are the synaptic reversal potential and synaptic half-activation point of the original (not rescaled) model, then Esyn,k = Esyn −V̄k and vhlf = Vhlf −V̄k.
2.2 Phase-space diagrams: nullclines and hyper-nullclines
2.2.1 Graded network of two 1D passive cells: nullclines
These are 2D networks consisting of system (1) with gk = 0 (k = 1,2). The v1- and v2-nullclines are given by
and
respectively, where
2.2.2 Self-connected graded networks of a 2D resonant cell: nullclines
These networks are given by system (1)-(2) where v2 is substituted by v1 in Isyn,1 given by Eq. (3). The phase-plane diagram is 2D. Because there is only one cell involved, we omit the subscript in the notation of the participating variables and parameters. The v- and w-nullclines are given, respectively, by
and
2.2.3 Graded network of two 2D cells: hyper-nullclines, fixed-points and dynamic phase-plane analysis
These networks are given by system (1)-(4). The phase-space diagram is 4D. The v1- and v2-nullsurfaces (obtained by making the current-balance equation for the corresponding nodes equal to zero) depend on different variables (the v1-nullsurface depends on w1 and v2 and the v2-nullsurface depends on v1 and w2). The w1- and w2-nullsurfaces are planes given by w1 = v1 and w2 = v2, respectively. By substituting into the corresponding current-balance equations and rearranging terms we obtain the following equations describing curves in the v1-v2 plane
and
These are extensions of the nullclines (5) and (6) for the networks of 1D passive cells. Their intersection (v̄1,v̄2) give the v1- and v2-coordinates of the 4D fixed-points (v̄1,v̄2,w̄1,w̄2) = (v̄1,v̄2,v̄1,v̄2). However, they are not nullclines, but projections of hyper-nullsurfaces onto the v1-v2 plane. We refer to them as hyper-nullclines. For the hybrid networks having one 2D and one 1D cell we set g2 = 0 in Eq. (11).
2.3 Bifurcation diagrams
As we mentioned in the previous section, the fixed-points are the intersections between the nullclines (for 2D systems) or the hyper-nullclines (for 3D and 4D systems). To determine the stability of the fixed-points we calculate the eigenvalues of the corresponding linearized system. For the 2D system of two 1D passive cells, the eigenvalues are easily calculated (see Appendix A). The expressions of the eigenvalues for the other considered networks (3D or 4D) are much more extensive and we will not show them in this work.
In all systems we can study the eigenvalue expressions when the parameter values vary, and we determine the existence of static bifurcations (such as, pitchfork and saddle-node) and dynamic bifurcations (for example, Hopf bifurcation) (Guckenheimer and Holmes 1983). If a Hopf bifurcation exists, we calculate the first Lyapunov coefficient with the MATLAB package MatCont (Dhooge et al. 2003), to determine the direction and stability of the emerging branch of cycles.
Considering the bifurcations of the fixed-points, we construct bifurcation diagrams in several parameter spaces determining regions with different dynamical scenarios. In particular, we can determine parameter values in which stable limit cycles exist.
2.4 Conductance-based models
Primarily for illustrative purposes, in some of our simulations we used biophysical (conductance-based) models (Skinner 2006; Hodgkin and Huxley 1952) to describe the subthreshold dynamics of neurons having one resonant and one fast amplifying currents. The current balance equation is given by
where V is the membrane potential (mV), t is time (ms), C is the membrane capacitance (μF/cm2), Iapp is the applied bias (DC) current (μA/cm2), Iin(t) is a time-dependent input current (μA/cm2), IL = GL(V − EL) is the leak current, and Ij = Gjxj(V − Ej) are generic expressions for ionic currents (j = 1,2) with maximal conductance Gj (mS/cm2) and reversal potentials Ej (mV) respectively. The gating variables obey kinetic equations of the form
where xj,∞(V ) and τj,x(V ) are the voltage-dependent activation/inactivation curves and time constants respectively. The former are given by
where Vhlf,x and Vslp,x > 0 are constants and the sign of σx indicates whether the curve describes an activation (σx < 0) or inactivation (σx > 0) process. In this paper we use voltage-independent time constants τj,x. This assumption is mostly for simplicity since we are focusing on the subthreshold voltage regime where the time constants are typically slowly varying functions of V.
The ionic currents Ij we consider here are persistent sodium, INap = GNapp∞(V )(V − ENa), hyperpolarization-activated, mixed-cation, inward (or h-), Ih = Ghr(V − Eh) and slow-potassium (M-type) IKs = GKsq(V − Ek).
2.5 Numerical simulations
The numerical solutions were computed by using the modified Euler method (Runge-Kutta, order 2) (Burden and Faires 1980) with a time step Δt = 0.1 ms in MATLAB (The Mathworks, Natick, MA). Smaller values of Δt have been used to check the accuracy of the results.
3 Results
3.1 Frequency preference response of individual cells revisited: resonators and passive cells / low-pass and band-pass filters
In this paper we consider individual cells with 1D and 2D linear dynamics having a stable fixed-point. The dynamics are described by Eqs. (1)-(2) with Isyn,k = 0 (for cells with 1D dynamics gk = 0). The response of linear cells to oscillatory inputs at different frequencies f (e.g., sinusoidal functions of t) is captured by the impedance Z(f), which is complex function with amplitude and phase. Following other authors we use the term impedance (and we write Z(f)) to refer to the impedance amplitude |Z(f)| and we refer to the corresponding curve as the impedance profile (Fig. 3). In this paper we focus on the impedance amplitude.
Linear 1D (passive) cells are low-pass filters (Fig. 3, red curve), while linear 2D cells can be either low-pass filters (not shown) or band-pass filters (Fig. 3, blue curve). Resonance refers to the ability of a cell to exhibit a peak in their amplitude response (impedance profile) at a preferred (resonant) frequency fres (Hutcheon and Yarom 2000; Richardson et al. 2003; Rotstein and Nadim 2014b). The corresponding unforced cells can have either a node, and exhibit an overshoot (as in Fig. 1, green curves), or a focus, and display damped oscillations (as in Fig. 1, red curves). We use the term resonator to refer to cells that exhibit resonance, but not damped oscillations.
The resonant properties of 2D linear systems, including their relationship between the intrinsic properties of the unforced cells (e.g, eigenvalues, intrinsic oscillatory frequencies) and the dynamic mechanism of generation of resonance have been investigated extensively by us and other authors (Richardson et al. 2003; Rotstein 2014a, 2014b). We refer the readers to these references for details.
3.2 Self-excited resonators can produce limit cycle oscillations and their frequency monotonically depends on the resonator’s resonant frequency
The self-excited resonator model is given by system (1)-(2) where vk = vj in Isyn,k (3). Because there is only one cell involved, we omit the subscripts in the notation of the variables and parameters. The nullclines of the phase-plane diagrams are given by Eqs. (8) and (9). The individual resonator does not oscillate.
Self-excitation is the simplest mechanism of network oscillation amplification of a resonator. Mathematically, a self-excited resonator has the same structure as individual resonator+amplifying current models (e.g., Ih+ INap or IKs+INap), which are able to produce sustained oscillations for large enough amplification levels (Fig. 1) (Rotstein 2017b). In both types of models the activation of the amplifying component (Isyn and INap) is instantaneous (or very fast), the shapes of their activation curves are similar, and the reversal potentials (ENa and Eex) are above the resting potential. Models having Ih or IKs as the only active ionic currents are quasi-linear resonators (Rotstein 2017b). Therefore, it is not surprising that self-excited linear resonators are able to produce oscillations given that resonant+amplifying models can do so. However, since resonance and amplification belong to different levels of organization in self-excited resonators, we can dissociate these two effects and investigate the effects of the resonant frequency of the individual neurons on the oscillation frequency, which we cannot do in individual cells.
3.2.1 Self-excited resonators can produce sustained (limit cycle) oscillations for appropriate balances among the resonance, amplification and excitation levels
Geometrically, increasing values of the excitatory maximal conductance Gex create nonlinearities of cubic type in the phase-plane diagram (Fig. 4). In single neurons this type of nonlinearities are typically created by amplifying gating variables (e.g., INap) in the presence of resonant gating variables (e.g., Ih or IKs) (Rotstein 2017b, c) (see also Ermentrout and Terman 2010; Izhikevich 2006).
Fig. 4-a illustrates the effects of increasing values of Gex when the linearized resonant conductance g (= 1) is much larger than the linearized leak conductance gL (= 0.25) for a resonator (with no intrinsic damped oscillations when Gex = 0). For low values of Gex, the coupled cell shows damped oscillations as the cubic-like nonlinearities of the v-nullcline begin to develop (panel a1). Limit cycle oscillations emerge as Gex increases further (panel a2) and disappear when the fixed-point moves to the right branch of the cubic-like v-nullcline for larger values of Gex and regains stability (panel a3). As Gex increases within the oscillatory range the amplitude increases and a time scale separation between the participating becomes more prominent, generating, for large enough values of Gex, oscillations of relaxation type (Fig. 5a).
Figure 4-b illustrates that oscillations are not generated when the g (= 0.25) to gL (= 0.25) ratios are relatively low. The cubic-like nonlinearities are still developed for high enough values of Gex (panels b2 and b3), but the fixed-point is located on the right branch of the v-nullcline where the fixed-point is stable, and moves further away from the knee as Gex increases. The amplification still happens, but it leads directly to depolarization block without oscillations. Similar behavior was observed when the fixed-point of the isolated cell is a stable focus instead of a stable node. However, oscillations can be restored by increasing the value of vhlf, which moves the fixed-point to the middle branch where it loses stability (not shown).
The transition of a resonator to a damped oscillator can be achieved by decreasing the value of τ (Rotstein and Nadim 2014b). Contrary to intuition, the presence of damped oscillations in the cell does not necessarily generate sustained oscillations in the self-excited network (Fig. 4c). When it happens, the time scale separation is smaller than for the resonator and therefore relaxation oscillations are more difficult to obtain (Fig. 5b).
3.2.2 The intrinsic resonant frequency controls the network oscillations frequency
Self-excited resonators are the simplest models where we can investigate the effects that changes on the resonant frequency (fres) of the individual non-oscillatory cells have on the network oscillation frequency (fntw). The resonator parameters that control fres (28) also control the values of other attributes of the impedance profile Z(f) such as the maximal impedance Zmax (29). In order to establish the effects of fres on fntw it is necessary change the model parameters in such a way as to cause the minimal possible changes on the shape of Z(f) (Chen et al. 2016). In the ideal situation, changes in fres would be accompanied only by a translation of Z(f). This is not possible for 2D linear models, but it is possible to change the model parameters in a balanced way so that fres changes, but Zmax remains constant (Chen et al. 2016). In this way the impedance profiles are displaced with minimal changes in their shape (Fig. 6a).
Figure 6b and c show that increasing values of fres directly affect fntw (Fig. 6b1 and c1) with minimal changes in the oscillation amplitude (Fig. 6b2 and c2). The onset of oscillations occurs for lower values of fres the lower gL (Fig. 6b1) and Gex (Fig. 6c1). As expected, the oscillations are more amplified the lower gL (Fig. 6b2) (Rotstein and Nadim2014b, 2017b) and the higher Gex (Fig. 6c2).
3.2.3 Sustained (limit cycle) oscillations are lost in self-excited 2D cells as the transition from resonators to low-pass filter
Resonance can be lost by various mechanisms (Rotstein and Nadim 2014b). One of them is having low enough values of the resonant conductance g (in the limit of g = 0 the coupled cell is 1D and therefore oscillations are not possible). Another one is having low-enough values of the time constant τ. Figure 7a illustrates how oscillations are lost as τ decreases. Note that the location of the fixed-point is independent of τ. Figure 7b anc c illustrate that oscillations cannot be recovered by decreasing Gex (panel b) or increasing vhlf (panel c) for the same value of τ as in panel a3. In both cases, these changes move the fixed-point to the middle branch of the v-nullcline, but it remains stable.
3.3 Mutually inhibitory 2D/1D hybrid networks can generate sustained (limit cycle) oscillations and their frequency monotonically depends on the intrinsic resonant frequency
The hybrid networks we consider here consist of a linear resonator (2D, cell 1) and a passive cell (1D, cell 2) reciprocally inhibited through graded synapses. We use system (1)-(2) with g1 > 0 and g2 = 0 and the additional description of the synaptic connectivity presented in Section 2.
These networks can be thought of as two “overlapping” circuits, non of each able to produce oscillations on their own: the linear 2D resonator used in the Appendix B and the reciprocally inhibited passive cells discussed in Appendix A. The oscillations result from the combined activity of these two “sub-circuits” where the mutually-inhibitory component acts as an amplifier of the resonant component.
For our analysis we represent the dynamics of these 3D networks using projections of the 3D phase-space (for v1, w1 and v2) onto the v1 − v2 plane and use the hyper-nullclines (10)-(11) (g2 = 0) defined in Section 2.2 (e.g., Fig. 8, left columns). In order to relate the dynamics of the hybrid networks to these of the mutually inhibitory passive cells we include in the phase-plane diagrams the v-nullcline for cell 1 (dashed-red curve) for g1 = 0 (no resonant gating variable).
3.3.1 Oscillations can be generated in 2D/1D hybrid networks and are amplified by increasing levels of mutual inhibition
Figure 8 shows the oscillations generated in these networks for values of Gin (= Gin,1,2 = Gin,2,1) that increase from top to bottom. Because the networks are mutually inhibited, these oscillations are not synchronized in-phase. They are created in a supercritical Hopf bifurcation (Fig. 11a1) and therefore they have small amplitude and are sinusoidal-like for small enough values of Gin (Fig. 8a). The effect of the resonant gating variable w1 is to bring the fixed-point of the mutually inhibitory (non-oscillatory) 1D/1D system (intersection between the dashed-red and green curves) to the oscillatory region where the v2 hyper-nullcline (green curve) is non-linear.
The oscillations amplitude increases with increasing values of Gin as the limit cycle trajectories evolve in small vicinities of the v2 hyper-nullcline (Fig. 8b and c). This amplification is accompanied by the development of a separation of time scales. For large enough values of Gin the oscillations are of relaxation-type (Fig. 8c). This partially reflects the time constant of the resonators, which needs to be slow enough, but it is a network effect since linear models do not display sustained oscillations.
For low values of Gin within the oscillatory regime, the network has only one fixed-point. As Gin increases, additional fixed-points are created (Figs. 8c1 and 11c1) in a Pitchfork bifurcation (Fig. 11a1), but they are not stable and they do not obstruct the presence of oscillations. However, as Gin increase further, these new fixed-points become stable by subcritical Hopf bifurcations and coexist as attractors with the limit cycle (Fig. 11a1). The oscillations are abruptly terminated when the stable limit cycle collides with an unstable limit cycle generated in one of the mentioned subcritical Hopf bifurcations (Fig. 11c1). Without oscillations the attractors that remain in the network are the fixed-points corresponding to one of the cells inhibited (Fig. 11a1 and c1).
Similarly to the mutually inhibited passive cells discussed above, for other parameter regimes the pitchfork bifurcation can be transformed into a saddle-node bifurcation (Fig. 11a2) without causing significant qualitative changes to the network dynamics (Fig. 11c2).
Figure 11b illustrates that existence of network oscillations requires balanced combinations of Gin and g1.
The generation of oscillations requires certain heterogeneity in the underlying mutually inhibitory 1D/1D system. For the oscillations in Fig. 8, gL,1 = 0.25, gL,2 = 0.5. This has been observed also for the related system studied in Manor et al. (1999). Oscillations are not possible for the hybrid 2D/1D network when gL,1 = gL,2 and C1 = C2 unless there is heterogeneity in the synaptic connectivity (Gin,2,1 > Gin,1,2) (not shown).
3.3.2 Development of relaxation oscillations for large mutual inhibition levels
In order to understand the mechanisms of generation of network oscillations and their properties in terms of the model parameters it is useful to consider the v1-nullsurface
parametrized by constant values of w1, N1c(v1) = N1c(v1,c), and track the motion of the trajectory as time progresses and the values of w1 change. This will cause the v1-hyper-nullclines in Fig. 8 to move as the trajectory evolves following the dynamics of w1. For the second cell the curve (10) for g2 = 0 is time-independent and therefore remains fixed. Note that Eq. (15) is Eq. (10) before w1 is substituted by v1.
In order to uncover the presence of nonlinearities of cubic type and to further capture the effect of the model’s geometric properties that give rise to the different types of oscillations we use an adapted version (Fig. 9) of the phase-plane diagram discussed in Fig. 8 where the hyper-nullclines and trajectories are plotted relative to the v2-hyper-nullcline. In the adapted phase-plane diagram, the v2 hyper-nullcline (green curve) is the zero-level line and the v1-hyper-nullclines (red curves) are cubic-like. The dashed-red curves represent the maximum (lower curve) and minimum (upper curve) levels of w1 during the oscillations. The red curve moves in between these two dashed-red curves as the oscillation progresses. The intersections between the green line and the moving red curve generated “transient fixed-points”, which are not fixed-points of the 3D system, but they serve as targets for the evolution of the trajectories. Specifically, in the v1-v2 plane presented in Fig. 9 (left panels), trajectories move towards the transient fixed-points with negative slope and their speed depends on the distance between the moving red curve and the green line. The existence of oscillations imply that the local extrema of the dashed-red curves do not intersect the zero-level reference green line. We emphasize that this is not a standard phase-plane diagram and it captures only specific aspects of the dynamics.
Similarly the self-excited resonator discussed above, increasing amplification levels are characterized by more pronounced cubic-like nonlinearities. Here the amplification levels are provided by the levels of mutual inhibition that are measured in terms of the values of Gin (compare panels a1 and b1 in Fig. 9).
When w1 = w1,min the red curve is at its highest level and the trajectory moves to the right (F1), towards the only transient fixed-point with relatively high speed (jump up). As this happens w1 increases, causing the red curve to shift down with the consequent motion of the transient fixed-point to the left. The variable v1 reaches its maximum when the trajectory crosses the transient fixed point and is forced to reverse direction (S1). As the red curve continues to shifts down, the stable and unstable transient fixed-points collide and disappear leaving only one transient fixed-point (on the leftmost side, for lower values of v1), which becomes the new target for the trajectory. The trajectory moves towards this target fixed-point, but it does so on a very slow time scale (S1) due to the ghost effect of the “defunct” fixed-points until it reaches the (jump down) region of fast motion (F2). The process repeats to complete the cycle through.
Relaxation oscillations are created when difference between the two local extrema on each dashed-red curve is large enough (well separated). This occus in Fig. 9a, but not in Fig. 9b, where the oscillations do not show any separation of time scales.
3.3.3 The resonator’s intrinsic resonant frequency controls the network oscillations frequency
Similarly to the self-excited resonator networks discussed above, the functional role of cellular resonance is to determine the frequency of the network oscillations. This is illustrated in Fig. 10 for various representative parameter set values. We followed the same protocol as in Section 3.2.2 (Fig. 6): for each value of fres, the values of g1 and τ1 are balanced so to maintain Zmax constant. In all cases, fntw increases with increasing values of fres (left panels). The oscillation amplitude increases with increasing values of Gin (= Gin,1,2 = Gin,2,1) and is more variable than for the self-excited resonator (Fig. 11).
The oscillatory active fres band (the range of values of fres for which network oscillations are possible) is relatively small as compared to the self-excited resonator network and it depends on the value of Zmax and gL,1. All other parameters fixed, decreasing values of Zmax (from Fig. 10a-b) causes the oscillatory active resonant frequency band to slide to the right. Figure 10c shows that the size active frequency band can be increased by decreasing gL,1 and increasing Zmax. A proper comparison would involve changing one parameter at the time, but decreasing values of gL,1 require increasing values of Zmax for the oscillations to be present.
3.4 Mutually excitatory 2D/1D hybrid networks can generate limit cycle oscillations and their frequency monotonically depends on the intrinsic resonant frequency
In Section 3.2 we showed that self-excited resonators can produce limit cycle oscillations, their frequency monotonically depends on the resonator’s resonant frequency, and relaxation oscillations develop for high enough levels of self excitation. Here we extend our results to include two-cell networks. Because self-excited resonators may be thought of as representing a population of synchronized in phase cells, we expect our results from Section 3.2 to hold of these networks. However, the presence of nonlinearities of cubic type are not apparent from either the model equations or the phase-space diagrams and need to be uncovered using the method developed in Section 3.3.
3.4.1 Oscillations can be generated in 2D/1D hybrid networks and are amplified with increasing levels of mutual excitation
Figure 12a1 show the small amplitude oscillations generated in a Hopf bifurcation (Fig. 14) for low enough values of Gex (Gex,1,2 = Gex,2,1). This oscillations are not identical, because the cells are not identical, but they are synchronized in phase. Figure 12b1 shows that increasing values of Gex lead to oscillations of relaxation type. The dynamic mechanisms of oscillation amplification (Fig. 12a2 and b2) as well as the cubic-based mechanisms of generation of relaxation oscillations (Fig. 12a3 and b3) are analogous to the mutually inhibitory networks discussed in Section 3.3.
3.4.2 The resonator’s intrinsic frequency controls the network oscillations frequency
Our results are presented in Fig. 13 for (i) values of Z1,max that increase from panel a to b (for a fixed-value of gL,1), and (ii) values of gL,1 that decrease from panel b to c (for a fixed values of Z1,max). In contrast to the mutually inhibitory networks, by increasing Z1,max, the oscillatory active resonant frequency band is increased, while the onset of oscillations occurs for lower values of fres, similarly to mutually inhibitory networks. The opposite behavior is observed for decreasing gL,1 with all the other parameters fixed. The behavior of the oscillations amplitude is similar to the mutually inhibitory networks (Fig. 14).
3.5 Graded mutually inhibitory or excitatory 2D/2D resonator networks generate sustained (limit cycle) oscillations and their frequency interact to control the network frequency
Here we extend our results from Sections 3.3 and 3.4 to networks having two mutually connected 2D resonators (that are not damped oscillators). We consider heterogeneous networks of non-identical resonator in order to test the effects of the interaction band-pass filters with different frequency bands. Because the mechanisms of generation of oscillations are similar to those discussed in Sections 3.3 and 3.4, we focus on the effects of the resonant frequencies of the participating resonators on the network oscillation frequency. Our results are presented in Fig. 15. The gray curves corresponds to networks of resonators with the same frequency band. The network model is given by system (1)-(4) with g1,g2 > 0.
Figure 15 shows the dependence of the network frequency on f1,res for representative values of f2,res and other model parameters for mutually inhibitory (panels a and b) and mutually excitatory (panels c) networks. As expected, in all cases the network frequency monotonically depends on the resonant frequency of both oscillators.
The range of values of f1,res for which network oscillations are possible increase with increasing values of f2,res as does the network frequency. However, the network frequency and the resonant frequency of the oscillators is no longer one-to-one, as was the case for the 2D/1D networks investigated in Sections 3.3 and 3.4, but it depends on the complex interaction between the two resonators. The one-to-one dependence between the network frequency and the resonant frequencies of the individual oscillators occurs when the two resonators have the same resonant frequency (black dots). The slopes of the network frequency curves for non-identical resonators are smaller than for identical resonators indicating that the network frequency is larger (smaller) than the resonant frequency to the left (right) of the black dot. This is independent of the mechanisms of amplification (mutual inhibition or mutual excitation).
Increasing values of Z2,max for fixed values of Z1,max and f2,res causes the range of values of f1,res for which oscillations exist increase, but the slope of the network frequency curves remains almost unchanged, independently of the value of gL,1 used and whether the mechanisms of amplification is based on mutual excitation or mutual inhibition (not shown).
4 Discussion
Network oscillations emerge from the cooperative activity of the intrinsic properties of the participating neurons (e.g., ionic currents) and the synaptic connectivity. Their generation and dynamics involve the nonlinearities and time scales present in the circuit components and the time scales that emerge from their interplay. Several neuron types have the intrinsic ability to generated membrane potential oscillations under blockade of all synaptic connectivity. Other neuron types do not show intrinsic membrane potential oscillations, but exhibit membrane potential resonance (MPR).
MPR is a property of the interaction between oscillatory inputs and the intrinsic neuronal properties (intrinsic resonant and amplifying processes) that uncovers a circuit latent time scale associated to the resonant frequency (MPR can be observed in the absence of intrinsic damped oscillations Richardson et al. 2003; Rotstein and Nadim 2014b). This hidden time scale (provided by the resonant frequency) is encoded in this impedance profile, and therefore, the impedance profile is the object of study for a non-oscillatory resonant neurons.
MPR has been investigated both experimentally and theoretically in many neuron types (Hutcheon et al. 1996, 2000; Richardson et al. 2003; Lampl and Yarom 1997; Llinás and Yarom 1986; Gutfreund et al. 1995; Erchova et al. 2004; Schreiber et al. 2004; Gastrein et al. 2011; Hu et al. 2002, 2009; Narayanan and Johnston 2007, 2008; Marcelin et al. 2009; D’angelo et al. 2001, 2009; Pike et al. 2000; Tseng and Nadim 2010; Tohidi and Nadim 2009; Solinas et al. 2007; Wu et al. 2001; Muresan and Savin 2007; Heys et al. 2010, 2012; Zemankovics et al.2010; Nolan et al. 2007; Engel et al. 2008; Boehlen et al. 2010, 2013; Rathour and Narayanan 2012, 2014; Fox et al. 2017; Chen et al. 2016; Beatty et al. 2015; Song et al. 2016; Art et al. 1986; Remme et al.2014; Higgs and Spain 2009; Yang et al. 2009; Mikiel-Hunter et al. 2016; Rau et al. 2015; Sciamanna and Wilson 2011; Lau and Zochowski 2011; van Brederode and Berger 2008; Rotstein 2014a, 2014b, 2015, 2017a; Szucs et al. 2017). However, whether MPR plays any functional role for network oscillations or is simply an epiphenomenon is largely an open question. A few studies have investigated the oscillatory properties of networks including neurons that exhibit MPR (Chen et al. 2016; Stark et al. 2013; Tikidji-Hamburyan et al. 2015; Tchumatchenko and Clopath 2014; Schmidt et al. 2016; Moca et al. 2014; Baroni et al. 2014; Rotstein et al. 2017d) or have resonant gating variables (Wang and Rinzel 1992; Manor et al. 1997; Torben-Nielsen et al. 2012). But the role that MPR plays in the generation of network oscillations and how the latent time scales affect the properties of the oscillatory networks in which they are embedded remained to be understood.
Addressing these questions is not straightforward. The concept of a hidden (latent) time scale is somehow abstract in the sense that it is the response the neuron would have in the presence of an externally imposed oscillatory input and not a property directly measurable in the individual neurons as, say, intrinsic membrane potential oscillations. It is also difficult to manipulate, because, as we discuss in the paper (see also Chen et al.2016), a proper comparison between the effects of different resonant frequencies would require sliding the impedance profile along the resonant frequency line while keeping the impedance profile shape unchanged (or as unchanged as possible), and this requires changing more than one model parameter, contrary to the standard mechanistic approach of changing one parameter at the time, while keep the remaining ones unchanged. Far from being simply a theoretical issue disconnected from the biological reality, the same approach and method should be used for the experimental determination of the role of resonance for network oscillations (Chen et al. 2016), particularly to experimentally test the predictions of our work (e.g., using the dynamic clamp technique).
In this paper we set out to investigate these issues using minimal network models consisting of non-oscillatory resonators mutually coupled to either a low-pass filter neuron or another band-pass filter (resonator). In this way we could separate the different effects that give rise to network oscillations in two different levels of organization that can be manipulated separately. The resonator provides the negative feedback and the network connectivity provides the amplification. Because we leave out resonators that can be also damped-oscillators, the network oscillations are not inherited from the individual cell level, but are created by the combination of the individual cell and connectivity properties.
We showed that oscillations can be generated in networks of increasing complexity: (i) self-excited band-pass filters, (ii) mutually inhibited band- and low-pass filters, (iii) mutually excited band- and low-pass filters, (iv) mutually inhibited band-pass filters, and (v) mutually excited band-pass filters. The presence of a resonator is necessary to generate oscillations in these networks; if the resonators are substituted by low-pass filters, network oscillations are not possible. However, what characterizes the oscillatory activity of a resonator is the resonant frequency, which cannot be assessed in the absence of oscillatory inputs. By showing that the network frequency monotonically depends on the resonant frequency of the individual band-pass filters, we provide a direct link between MPR and the generation of network oscillations. To our knowledge, this is the first time such a link is provided. A similar result was obtained in electrically coupled networks (Chen et al. 2016), but in these cases, the network oscillations were driven by one of the nodes that was a sustained oscillator. Network oscillations have been shown to emerge as the result of the interaction of damped oscillators (Torben-Nielsen et al. 2012; Loewenstein et al. 2001; Manor et al. 1997), but in these cases, the network oscillations are inherited from the oscillatory activity of the individual intrinsically oscillatory nodes.
The existence of sustained oscillations in networks of non-oscillatory neurons is not without precedent. The inferior olive oscillatory network studied in Manor et al. (1997) is composed of electrically coupled neurons that, when isolated, are damped oscillators. In this case, the individual neurons are nonlinear and include both resonant and amplifying effects, but the connectivity is linear. The model investigated in Wang and Rinzel (1992) involves nonlinear neurons reciprocally inhibited with graded synapses. For baseline values of the DC input current, the neurons are quasi-linear and are at most damped oscillators. The nonlinearities developed for negative input current values combined with the dynamics resulting from the mutual synaptic inhibition result in the post-inhibitory rebound mechanism underlying the observed network oscillations. Post-inhibitory rebound (PIR) and subthreshold resonance are closely related phenomena since both require the presence of a negative feedback effect, but they are different in nature. The mechanisms investigated in Wang and Rinzel (1992) depend crucially on the effective pulsatile nature resulting from the dynamic interaction between cells and synaptic connectivity. Models having an h-current also show PIR. Even in the presence of an (additive) amplifying current, such as the Ih + INap model, the functional connectivity in these models is not PIR-based, but rather resonance-based as we show in this paper (unpublished observation). In Manor et al. (1999) and Ambrosio-Mouser et al. (2006) oscillations emerge in two reciprocally inhibited passive cells where one of them is self-excited, thus providing additional dynamics to the network. The model studied in Chen et al. (2016) consists of an oscillator electrically coupled to a follower resonator whose intrinsic resonant frequency directly affects the network frequency while the shape of the impedance profile remains almost unchanged.
The minimal models we used in this paper serve the purpose of establishing the role of MPR for the generation of network oscillations. Other types of models could include resonant properties at the network level. Moreover, there are alternative possible scenarios where, for example, amplification occurs at the single cell level and the negative feedback effect occurs at the network level. These types of networks are beyond the scope of this paper. The understanding of the oscillatory properties of such networks requires more research.
The types of models we used could be argued to be too simplistic and not realistic. We used these models precisely because of their simplicity in order to understand some conceptual points that can be generalized and applied to more realistic networks. However, one should note that the type of models we used are very close to the firing rate models of Wilson-Cowan type (Wilson and Cowan 1972) with adaptation (Curtu and Rubin 2011; Shpiro et al. 2009; Tabak et al. 2011), which are essentially resonators (unpublished observation). In this models, the nonlinearity is similar to the one we used (sigmoid type, instantaneously fast). Therefore, our results can be easily generalized to these models. One example are the networks of OLM cells and fast spiking (PV+) interneurons (INT) that have been shown to be able to produce network oscillations (Gillies et al. 2002; Rotstein et al. 2005). OLM cells show MPR (Zemankovics et al. 2010), while the presence of MPR in INT is debated (Pike et al. 2000; Zemankovics et al. 2010). Although our models are simplistic, they make predictions that can be tested using the dynamic clamp technique (Sharp et al. 1993; Prinz et al. 2004).
The results presented in this paper advance the conceptual understanding of the oscillatory interaction among nodes in a network, particularly when there are hidden time scales, and proposes ideas to understand the dynamics of these networks. We open several questions regarding the ability of networks of band-pass filters to generate oscillatory patterns and how the properties of these patterns depend on the properties of these filters. More research is required to address these issues.
References
Ambrosio-Mouser, C., Nadim, F., Bose, A. (2006). The effects of varying the timing of inputs on a neural oscillator. SIAM Journal on Applied Dynamical Systems, 5, 108–139.
Art, J.J., Crawford, A.C., Fettiplace, R. (1986). Electrical resonance and membrane currents in turtle cochlear hair cells. Hearing Research, 22, 31–36.
Baroni, F., Burkitt, A.N., Grayden, D.B. (2014). Interplay of intrinsic and synaptic conductances in the generation of high-frequency oscillations in interneuronal networks with irregular spiking. PLoS Computational Biology, 10, e1003574.
Beatty, J., Song, S.C., Wilson, C.J. (2015). Cell-type-specific resonances shape the response of striatal neurons to synaptic inputs. Journal of Neurophysiology, 113, 688–700.
Beer, R. (1995). On the dynamics of small continuous-time recurrent neural networks. Adaptive Behavior, 4, 471–511.
Boehlen, A., Heinemann, U., Erchova, I. (2010). The range of intrinsic frequencies represented by medial entorhinal cortex stellate cells extends with age. The Journal of Neuroscience, 30, 4585–4589.
Boehlen, A., Henneberger, C., Heinemann, U., Erchova, I. (2013). Contribution of near-threshold currents to intrinsic oscillatory activity in rat medial entorhinal cortex layer II, stellate cells. Journal of Neurophysiology, 109, 445–463.
Borgers, C. (2017). An introduction to modeling neuronal dynamics. Berlin: Springer.
Brea, J.N., Kay, L.M., Kopell, N.J. (2009). Biophysical model for gamma rhythms in the olfactory bulb via subthreshold oscillations. Proceedings of the National Academy of Sciences of the United States of America, 106, 21954–21959.
Burden, R.L., & Faires, J.D. (1980). Numerical analysis. Boston: PWS Publishing Company.
Chen, Y., Li, X., Rotstein, H.G., gap, F. Nadim. (2016). Membrane potential resonance frequency directly influences network frequency through junctions. Journal of Neurophysiology, 116, 1554–1563.
Curtu, R., & Rubin, J. (2011). Interaction of canard and singular Hopf mechanisms in a neural model. SIAM Journal on Applied Dynamical Systems, 4, 1443–1479.
D’angelo, E., Nieus, T., Maffei, A., Armano, S., Rossi, P., Taglietti, V., Fontana, A., Naldi, G. (2001). Theta-frequency bursting and resonance in cerebellar granule cells: Experimental evidence and modeling of a slow K+ - dependent mechanism. The Journal of Neuroscience, 21, 759–770.
D’Angelo, E., Koekkoek, S.K.E., Lombardo, P., Solinas, S., Ros, E., Garrido, J., Schonewille, M., De Zeeuw, C.I. (2009). Timing in the cerebellum: oscillations and resonance in the granular layer. Neuroscience, 162, 805–815.
David, F., Courtiol, E., Buonviso, N., Fourcaud-Trocme, N. (2015). Competing mechanisms of gamma and beta oscillations in the olfactory bulb based on multimodal inhibition of mitral cells over a respiratory cycle. eNeuro, 2, e0018–15.2015.
Dayan, P., & Abbott, L.F. (2001). Theoretical Neuroscience. Cambridge: MIT Press.
Dhooge, A., Govaerts, W., Kuznetsov, Yu.A. (2003). MATCONT: A MATLAB package for numerical bifurcation analysis of ODEs. ACM Transactions on Mathematical Software, 29(2), 141–164.
Engel, T.A., Schimansky-Geier, L., Herz, A.V., Schreiber, S., Erchova, I. (2008). Subthreshold membrane-potential resonances shape spike-train patterns in the entorhinal cortex. Journal of Neurophysiology, 100, 1576–1588.
Erchova, I., Kreck, G., Heinemann, U., Herz, A.V.M. (2004). Dynamics of rat entorhinal cortex layer II and III cells: Characteristics of membrane potential resonance at rest predict oscillation properties near threshold. Journal of Physiology, 560, 89–110.
Ermentrout, G.B., & Terman, D. (2010). Mathematical foundations of neuroscience. Berlin: Springer.
Fox, D.M., Tseng, H., Smolinsky, T., Rotstein, H.G., Nadim, F. (2017). Mechanisms of generation of membrane potential resonance in a neuron with multiple resonant ionic currents. PLoS Computational Biology, 13, e1005565.
Gastrein, P., Campanac, E., Gasselin, C., Cudmore, R.H., Bialowas, A., Carlier, E., Fronzaroli-Molinieres, L., Ankri, N., Debanne, D. (2011). The role of hyperpolarization-activated cationic current in spike-time precision and intrinsic resonance in cortical neurons in vitro. The Journal of Physiology, 589, 3753–3773.
Gillies, M.J., Traub, R.D., LeBeau, F.E.N., Davies, C.H., Gloveli, T., Buhl, E.H., Whittington, M.A. (2002). A model of atropine-resistant theta oscillations in rat hippocampal area CA1. Journal of Physiology, 543.3, 779–793.
Guckenheimer, J., & Holmes, P. (1983). Nonlinear oscillations, dynamical systems, and bifurcations of vector fields. New York: Springer.
Gutfreund, Y., Yarom, Y., Segev, I. (1995). Subthreshold oscillations and resonant frequency in Guinea pig cortical neurons: Physiology and modeling. The Journal of Physiology, 483, 621–640.
Heys, J.G., Giacomo, L.M., Hasselmo, M.E. (2010). Cholinergic modulation of the resonance properties of stellate cells in layer II, of the medial entorhinal. Journal of Neurophysiology, 104, 258–270.
Heys, J.G., Schultheiss, N.W., Shay, C.F., Tsuno, Y., Hasselmo, M.E. (2012). Effects of acetylcholine on neuronal properties in entorhinal cortex. Frontiers in Behavioral Neuroscience, 6, 32.
Higgs, M.H., & Spain, W.J. (2009). Conditional bursting enhances resonant firing in neocortical layer 2-3 pyramidal neurons. Australasian Journal of Neuroscience, 29, 1285–1299.
Hodgkin, A.L., & Huxley, A.F. (1952). A quantitative description of membrane current and its application to conductance and excitation in nerve. The Journal of Physiology, 117, 500–544.
Hu, H., Vervaeke, K., Storm, J.F. (2002). Two forms of electrical resonance at theta frequencies generated by M-current, h-current and persistent Na+ current in rat hippocampal pyramidal cells. The Journal of Physiology, 545.3, 783–805.
Hu, H., Vervaeke, K., Graham, J.F., Storm, L.J. (2009). Complementary theta resonance filtering by two spatially segregated mechanisms in CA,1 hippocampal pyramidal neurons. Journal of Neuroscience, 29, 14472–14483.
Hutcheon, B., Miura, R.M., Puil, E. (1996). Subthreshold membrane resonance in neocortical neurons. Journal of Neurophysiology, 76, 683–697.
Hutcheon, B., & Yarom, Y. (2000). Resonance, oscillations and the intrinsic frequency preferences in neurons. Trends in Neurosciences, 23, 216–222.
Izhikevich, E. (2006). Dynamical Systems in Neuroscience: The geometry of excitability and bursting. Cambridge: MIT Press.
Lampl, I, & Yarom, Y. (1997). Subthreshold oscillations and resonant behaviour: Two manifestations of the same mechanism. Neuroscience, 78, 325–341.
Lau, T., & Zochowski, M. (2011). The resonance frequency shift, pattern formation, and dynamical network reorganization via sub-threshold input. PLoS ONE, 6, e18983.
Ledoux, E., & Brunel, N. (2011). Dynamics of networks of excitatory and inhibitory neurons in response to time-dependent inputs. Frontiers in Computational Neuroscience, 5, 1–17.
Llinás, R. R., & Yarom, Y. (1986). Oscillatory properties of Guinea pig olivary neurons and their pharmachological modulation: An in vitro study. The Journal of Physiology, 376, 163–182.
Loewenstein, Y., Yarom, Y., Sompolinsky, H. (2001). The generation of oscillations in networks of electrically coupled cells. Proceedings of the National Academy of Sciences of the United States of America, 98, 8095–8100.
Manor, Y., Rinzel, J., Segev, I., Yarom, Y. (1997). Low-amplitude oscillations in the inferior olive A model based on electrical coupling of neurons with heterogeneous channel densities. Journal of Neurophysiology, 77, 2736–2752.
Manor, Y., Nadim, F., Epstein, S., Ritt, J., Marder, E., Kopell, N. (1999). Network oscillations generated by balancing graded asymmetric reciprocal inhibition in passive neurons. Journal of Neuroscience, 19, 2765–2779.
Marcelin, B., Becker, A., Migliore, M., Esclapez, M., Bernard, C. (2009). H channel-dependent deficit of theta oscillation resonance and phase shift in temporal lobe epilepsy. Neurobiology of Disease, 33, 436–447.
Mikiel-Hunter, J., Kotak, V., Rinzel, J. (2016). High-frequency resonance in the gerbil medial superior olive. PLoS Computational Biology, 12, 1005166.
Moca, V.V., Nicolic, D., Singer, W., Muresan, R. (2014). Membrane resonance enables stable robust gamma oscillations. Cerebral Cortex, 24, 119–142.
Morris, H., & Lecar, C. (1981). Voltage oscillations in the barnacle giant muscle fiber. Biophysical Journal, 35, 193–213.
Muresan, R., & Savin, C. (2007). Resonance or integration? self-sustained dynamics and excitability of neural microcircuits. Journal of Neurophysiology, 97, 1911–1930.
Narayanan, R., & Johnston, D. (2007). Long-term potentiation in rat hippocampal neurons is accompanied by spatially widespread changes in intrinsic oscillatory dynamics and excitability. Neuron, 56, 1061–1075.
Narayanan, R., & Johnston, D. (2008). The h channel mediates location dependence and plasticity of intrinsic phase response in rat hippocampal neurons. The Journal of Neuroscience, 28, 5846–5850.
Nolan, M.F., Dudman, J.T., Dodson, P.D., Santoro, B. (2007). HCN1 channels control resting and active integrative properties of stellate cells from layer II of the entorhinal cortex, have been effectively employed for different. Journal of Neuroscience, 27, 12440–12551.
Pike, F.G., Goddard, R.S., Suckling, J.M., Ganter, P., Kasthuri, N., Paulsen, O. (2000). Distinct frequency preferences of different types of rat hippocampal neurons in response to oscillatory input currents. Journal of Physiology, 529, 205–213.
Prinz, A.A., Abbott, L.F., Marder, E. (2004). The dynamic clamp comes of age. Trends in Neurosciences, 27, 218–224.
Rathour, R.K., & Narayanan, R. (2012). Inactivating ion channels augment robustness of subthreshold intrinsic response dynamics to parametric variability in hippocampal model neurons. Journal of Physiology, 590, 5629–5652.
Rathour, R.K., & Narayanan, R. (2014). Homeostasis of functional maps in inactive dendrites emerges in the absence of individual channelostasis. Proceedings of the National Academy of Sciences of the United States of America, 111, E1787–E1796.
Rau, F., Clemens, J., Naumov, V., Hennig, R.M., Schreiber, S. (2015). Firing-rate resonances in the peripheral auditory system of the cricket, gryllus bimaculatus. Journal of Computational Physiology, 201, 1075–1090.
Remme, W.H., Donato, R., Mikiel-Hunter, J., Ballestero, J.A., Foster, S., Rinzel, J., McAlpine, D. (2014). Subthreshold resonance properties contribute to the efficient coding of auditory spatial cues. Proceedings of the National Academy of Sciences of the United States of America, 111, E2339–E2348.
Richardson, M.J.E., Brunel, N., Hakim, V. (2003). From subthreshold to firing-rate resonance. Journal of Neurophysiology, 89, 2538–2554.
Rotstein, H.G., Pervouchine, D., Gillies, M.J., Acker, C.D., White, J.A., Buhl, E.H., Whittington, M.A., Kopell, N. (2005). Slow and fast inhibition and h-current interact to create a theta rhythm in a model of CA1 interneuron networks. Journal of Neurophysiology, 94, 1509–1518.
Rotstein, H.G. (2014a). Frequency preference response to oscillatory inputs in two-dimensional neural models: a geometric approach to subthreshold amplitude and phase resonance. The Journal of Mathematical Neuroscience, 4, 11.
Rotstein, H.G., & Nadim, F. (2014b). Frequency preference in two-dimensional neural models: a linear analysis of the interaction between resonant and amplifying currents. Journal of Computational Neuroscience, 37, 9–28.
Rotstein, H.G. (2015). Subthreshold amplitude and phase resonance in models of quadratic type: nonlinear effects generated by the interplay of resonant and amplifying currents. Journal of Computational Neuroscience, 38, 325–354.
Rotstein, H.G. (2017a). Resonance modulation, annihilation and generation of antiresonance and antiphasonance in 3d neuronal systems: interplay of resonant and amplifying currents with slow dynamics. J. Comp. Neurosci., 43, 35–63.
Rotstein, H.G. (2017b). The shaping of intrinsic membrane potential oscillations: positive/negative feedback, ionic resonance/amplification, nonlinearities and time scales. Journal of Computational Neuroscience, 42, 133–166.
Rotstein, H.G. (2017c). Spiking resonances in models with the same slow resonant and fast amplifying currents but different subthreshold dynamic properties. Journal of Computational Neuroscience, 43, 243–271.
Rotstein, H.G., Ito, T., stark, E. (2017d). Inhibition based theta spiking resonance in a hippocampal network. Society for Neuroscience Abstracts, 615, 11.
Schmidt, S.L., Dorsett, C.R., Iyengar, A.K., Frölich, F. (2016). Interaction of intrinsic and synaptic currents mediate network resonance driven by layer V pyramidal cells. Cereb. Cortex, page https://doi.org/10.1093/cercor/bhw242.
Schreiber, S., Erchova, I, Heinemann, U., Herz, A.V. (2004). Subthreshold resonance explains the frequency-dependent integration of periodic as well as random stimuli in the entorhinal cortex. Journal of Neurophysiology, 92, 408–415.
Sciamanna, G., & Wilson, C.J. (2011). The ionic mechanism of gamma resonance in rat striatal fast-spiking neurons. Journal of Neurophysiology, 106, 2936–2949.
Sharp, A.A., O’Neil, M.B., Abbott, L.F., Marder, E. (1993). The dynamic clamp: artificial conductances in biological neurons. Trends in Neurosciences, 16, 389–394.
Shpiro, A., Moreno-Bote, R., Rubin, N., Rinzel, J. (2009). Balance between noise and adaptation in competition models of perceptual bistability. Journal of Computational Neuroscience, 27, 37–54.
Skinner, F.K. (2006). Conductance-based models. Scholarpedia, 1, 1408.
Solinas, S., Forti, L., Cesana, E., Mapelli, J., De Schutter, E., D’Angelo, E. (2007). Fast-reset of pacemaking and theta-frequency resonance in cerebellar Golgi cells: simulations of their impact in vivo. Frontiers in Cellular Neuroscience, 1, 4.
Song, S.C., Beatty, J.A., Wilson, C.J. (2016). The ionic mechanism of membrane potential oscillations and membrane resonance in striatal lts interneurons. Journal of Neurophysiology, 116, 1752–1764.
Stark, E., Eichler, R., Roux, L., Fujisawa, S., Rotstein, H.G., Buzsáki, G. (2013). Inhibition-induced theta resonance in cortical circuits. Neuron, 80, 1263–1276.
Szucs, A., Ráktak, A., Schlett, K., Huerta, R. (2017). Frequency-dependent regulation of intrinsic excitability by voltage-activated membrane conductances, computational modeling and dynamic clamp. European Journal of Neuroscience, 46, 2429–2444.
Tabak, J., Rinzel, J., Bertram, R. (2011). Quantifying the relative contributions of divisive and substractive feedback to rhythm generation. PLoS Computational Biology, 7, e1001124.
Tchumatchenko, T., & Clopath, C. (2014). Oscillations emerging from noise-driven steady state in networks with electrical synapses and subthreshold resonance. Nature Communications, 5, 5512.
Tikidji-Hamburyan, R.A., Martínez, J. J., White, J.A., Canavier, C. (2015). Resonant interneurons can increase robustness of gamma oscillations. Journal of Neuroscience, 35, 15682–15695.
Tohidi, V., & Nadim, F. (2009). Membrane resonance in bursting pacemaker neurons of an oscillatory network is correlated with network frequency. The Journal of Neuroscience, 29, 6427–6435.
Torben-Nielsen, B., Segev, I., Yarom, Y. (2012). The generation of phase differences and frequency changes in a network model of inferior olive subthreshold oscillations. PLoS Computational Biology, 8, 31002580.
Tseng, H., & Nadim, F. (2010). The membrane potential waveform on bursting pacemaker neurons is a predictor of their preferred frequency and the network cycle frequency. The Journal of Neuroscience, 30, 10809–10819.
van Brederode, J.F.M., & Berger, A.J. (2008). Spike-firing resonance in hypoglossal motoneurons. Journal of Neurophysiology, 99, 2916–2928.
Wang, X.-J., & Rinzel, J. (1992). Alternating and synchronous rhythms in reciprocally inhibitory model neurons. Neural Computation, 4, 84–97.
Wilson, H.R., & Cowan, J.D. (1972). Excitatory and inhibitory interactions in localized populations of model neurons. Biophysical Journal, 12, 1–24.
Wu, N., Hsiao, C. -F., Chandler, S.H. (2001). Membrane resonance and subthreshold membrane oscillations in mesencephalic V neurons: Participants in burst generation. The Journal of Neuroscience, 21, 3729–3739.
Yang, S., Lin, W., Feng, A. A. (2009). Wide-ranging frequency preferences of auditory midbrain neurons Roles of membrane time constant and synaptic properties. The European Journal of Neuroscience, 30, 76–90.
Zemankovics, R., Káli, S., Paulsen, O., Freund, T.F., Hájos, N. (2010). Differences in subthershold resonance of hippocampal pyramidal cells and interneurons: The role of h-current and passive membrane characteristics. The Journal of Physiology, 588, 2109–2132.
Acknowledgments
This work was partially supported by the National Science Foundation grant DMS-1608077 (HGR) and the Universidad Nacional del Sur grant PGI 24/L096 (AB). The authors thank Eran Stark for useful comments and discussions. HGR is grateful to the Courant Institute of Mathematical Sciences at NYU and the Department of Mathematics at Universidad Nacional del Sur, Argentina.
Author information
Authors and Affiliations
Corresponding author
Additional information
Action Editor: Frances K. Skinner
Publisher’s note
Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.
Horacio G. Rotstein is also affiliated as Corresponding Investigator, CONICET, Argentina.
Appendices
Appendix A: Two-cell networks of passive cells do not produce limit cycle oscillations
Here we consider system (1) with gk = 0 (k = 1, 2) and Isyn,k given by (3) and (4).
1.1 A.1 Linearization and eigenvalues
The linearization of system (1) with gk = 0 (k = 1, 2) and Isyn,k given by Eqs. (3) and (4) reads
where
The eigenvalues (r1 and r2) are given by
The first two terms in Eq. (22) are always negative (provided gL,1 > 0 and gL,2 > 0). The second term in the radicand is positive if \(F_{v_{2}}\) and \(G_{v_{1}}\) have the same sign and negative if \(F_{v_{2}}\) and \(G_{v_{1}}\) have different signs. Therefore, the fixed-point for networks with the same type of connections (both excitatory or both inhibitory) can be either stable nodes or saddles, while the fixed-points for excitatory-inhibitory networks can be either stable nodes or stable foci (e.g., Fig. 16).
1.2 A.2 Absence of limit cycles
We compute
Since U < 0 for all v1 and v2 (provided gL,1 > 0 and gL,2 > 0), then by the Bendixson-Dulac theorem (Guckenheimer and Holmes 1983), there are no limit cycles in the (v1,v2)-plane. This argument breaks down when either gL,1 < 0 or gL,2 < 0 and small enough, indicating a strong positive feedback effect generated by an ionic process.
Appendix B: Dynamics of autonomous and forced 2D cells
We consider the following system
where the parameters gL, g, C and τ are as in system (1)-(2) by omitting the subindex (k), Ain is the input amplitude, and f is the input frequency. We assume here that all intrinsic parameters (gL, g, C and τ) are positive. The constraint g > 0 indicates that the ionic current that the term gw linearizes is a resonant process (negative feedback) (Richardson et al. 2003; Rotstein and Nadim 2014b). The linearized parameter gL captures the effects of the biophysical leak current and possibly another ionic amplifying process (positive feedback) provided by an additional current. Strong enough amplifying processes may cause gL to be negative.
1.1 B.1 Autonomous 2D cells
The eigenvalues for system (24)-(25) are given by
System (1)-(2) (Ain = 0) has a uniquefixed-point (v̄,w̄) = (0, 0). This fixed-point is stable provided gLτ + C > 0. It is a stable node if the radicand in Eq. (26) is non-negative and a stable focus otherwise. We refer the reader for details on the dependence of the fixed-point type (node or focus) with the model parameters to Rotstein and Nadim (2014b).
1.2 B.2 Forced 2D cells: impedance profiles and resonant frequencies
The impedance profile for system (24)-(25) is given by Richardson et al. (2003) and Rotstein and Nadim (2014b)
where ω = 2πf/1000. The resonant frequency is given by
where for simplicity C = 1. The impedance peak Zmax is given by
The resonant properties of 2D linear systems, including their relationship between the intrinsic properties of the unforced cells (e.g, eigenvalues, intrinsic oscillatory frequencies) and the dynamic mechanism of generation of resonance have been investigated extensively by us and other authors (Richardson et al. 2003; Rotstein 2014a, b).
An important aspect to note, relevant for this paper, is that resonance can occur in the absence of damped oscillations; i.e., when the fixed-point is a stable node. In this paper we focus on resonators that do not show damped oscillations.
1.3 B.3 Quasi-displacement of impedance profiles: fixed peak values and changing resonant frequencies
From Eq. (29) we can compute the value of g as a function of Zmax and the other model parameters
Equation (30) relates the model parameters of a forced 2D linear system of the form (24)-(25) for which the impedance peak Zmax is constant. In order to calculate the balanced values of g and τ, if they exist, for given values of Zmax and gL (fixed) we proceed as follows. First we take values of τ within certain range and compute the corresponding values of g using Eq. (30). For these values of gL, g and τ we compute ωres using (28) and C = 1. In this way we have g = g(τ) and ωres = ωres(τ) for a given value of Zmax.
Appendix C: Self-inhibited 2D cells do not produce sustained (limit cycle) oscillations
We consider system (1)-(2) with vk = vj, Esyn,k = Ein and Gsyn,jk = Gin in Isyn,k (3). For simplicity we omit the subindex.
Our discussion below is based on the values for the synaptic parameters we use in this paper (Ein = − 20, vhlf = 0 and vslp = 1) for which S∞(v = Ein) ∼ 0. The results we present are valid for a larger range of parameter values provided S∞(v = Ein) is small enough (the sigmoid function S∞ changes fast enough around vhlf and is negligible at v = Ein).
From our discussion above (Section B), the uncoupled system (Gin = 0) has a stable fixed-point. We expect this to persist for small enough values of Gin.
1.1 C.1 Fixed point
The fixed-points of the self-inhibited 2D system are the zeros of
whose derivative is given by
The first two terms in Eq. (32) are negative, while the third one is negative provided v > Ein. However, for v < Ein this third term is negligible. Therefore, H(v) is a decreasing function for all v. Because H(v) < 0 for large enough values of v, a fixed-point exists if H(v) > 0 for some v. The first term in Eq. (31) is positive for negative values of v and so is the second term provided v < Ein. Therefore, the self-inhibited cell has a unique fixed-point (v̄∗,v̄∗). Since H(0) = GinS∞(0)Ein < 0 and H(Ein) = −(gL + g)Ein > 0, then Ein < v̄∗ < 0.
The stability properties of the fixed-point (v̄∗,v̄∗) are determined by looking at the equation for the eigenvalues (26) with gL substituted by gL∗ = gL + GinS∞′(v̄∗)(v̄∗− Ein) + GinS∞(v̄∗) > gL. Therefore, the stability of the fixed-point is preserved. If (v̄,v̄) is a stable node, then (v̄∗,v̄∗) is a node for all values of Gin (Fig. 17a). In contrast, if (v̄,v̄) is a stable focus, then (v̄∗,v̄∗) remains a stable focus for small enough values of Gin, but it transitions to a stable node for large enough values of Gin (Fig. 17b).
1.2 C.2 Absence of limit cycles
Because the self-inhibited 2D systems is relatively simple we do not expect the existence of limit cycles. We address this in the region R = {(v,w) ∈ R2 : v > Ein}. We compute
By substituting \(S_{\infty }^{\prime }(v)=S_{\infty }(v)(1-S_{\infty }(v)) > 0 \) where S∞, given by Eq. (4), we obtain
If v > Ein (assuming gL > 0), then U < 0. Thus, by the Bendixson-Dulac theorem (Guckenheimer and Holmes 1983), there are no limit cycles lying entirely in the region R.
Rights and permissions
About this article
Cite this article
Bel, A., Rotstein, H.G. Membrane potential resonance in non-oscillatory neurons interacts with synaptic connectivity to produce network oscillations. J Comput Neurosci 46, 169–195 (2019). https://doi.org/10.1007/s10827-019-00710-y
Received:
Revised:
Accepted:
Published:
Issue Date:
DOI: https://doi.org/10.1007/s10827-019-00710-y